| Literature DB >> 21309579 |
Steven L Swann1, Scott P Brown, Steven W Muchmore, Hetal Patel, Philip Merta, John Locklear, Philip J Hajduk.
Abstract
We present a probabilistic framework for interpreting structure-based virtual screening that returns a quantitative likelihood of observing bioactivity and can be quantitatively combined with ligand-based screening methods to yield a cumulative prediction that consistently outperforms any single screening metric. The approach has been developed and validated on more than 30 different protein targets. Transforming structure-based in silico screening results into robust probabilities of activity enables the general fusion of multiple structure- and ligand-based approaches and returns a quantitative expectation of success that can be used to prioritize (or deprioritize) further discovery activities. This unified probabilistic framework offers a paradigm shift in how docking and scoring results are interpreted, which can enhance early lead-finding efforts by maximizing the value of in silico computational tools.Mesh:
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Year: 2011 PMID: 21309579 DOI: 10.1021/jm1013677
Source DB: PubMed Journal: J Med Chem ISSN: 0022-2623 Impact factor: 7.446